Mobile edge computing (MEC) deployment in a multi-robot cooperation (MRC) system is an effective way to accomplish the tasks in terms of energy consumption and implementation latency. However, the computation and communication resources need to be considered jointly to fully exploit the advantages brought by the MEC technology. In this paper, the scenario where multi robots cooperate to accomplish the time-critical tasks is studied, where an intelligent master robot (MR) acts as an edge server to provide services to multiple slave robots (SRs) and the SRs are responsible for the environment sensing and data collection. To save energy and prolong the function time of the system, two schemes are proposed to optimize the computation and communication resources, respectively. In the first scheme, the energy consumption of SRs is minimized and balanced while guaranteeing that the tasks are accomplished under a time constraint. In the second scheme, not only the energy consumption, but also the remaining energies of the SRs are considered to enhance the robustness of the system. Through the analysis and numerical simulations, we demonstrate that even though the first policy may guarantee the minimization on the total SRs' energy consumption, the function time of MRC system by the second scheme is longer than that by the first one.
翻译:在多机器人合作(MRC)系统中部署移动边缘计算(MEC)是完成能源消耗和执行延迟方面任务的有效途径,但是,计算和通信资源需要共同考虑,以充分利用MEC技术带来的优势。在本文件中,研究多机器人合作完成时间紧迫任务的设想,即智能主机器人(MR)作为边缘服务器,为多个奴隶机器人(SRs)提供服务,而SRs负责环境遥感和数据收集。为了节省能源并延长系统功能时间,建议了两个方案,分别优化计算和通信资源。在第一个方案,将SR的能源消耗减少到最低程度并平衡,同时保证任务在时间限制下完成。在第二个方案,不仅考虑能源消耗,而且考虑SRs的剩余能量,以加强系统的坚固性。通过分析和数字模拟,我们证明,即使第一项政策可以保证将SRs第一个能源消耗总量减少到最低程度,但MRC系统的功能要比MRC系统耗时长。